PROTOTYPE APPLICATION OF CROWD DETECTION SYSTEM FOR TRADITIONAL MARKET VISITOR BASED ON IOT USING RFID MFRC522

Wirmanto Suteddy, Dastin Aryo Atmanto, Rizki Nuriman, Afila Ansori
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Abstract

Crowds of people are the government's concern in dealing with the COVID-19 pandemic because the virus transfers unwittingly from one person to another and transmits it to the closest environment. One of the locations where crowds are difficult to avoid is a traditional market and is thought to be one of the places that have the potential to become the center of the spread of COVID-19. Various efforts made by the government in suppressing crowds have yielded results, but not a few violations that occur are carried out intentionally or unintentionally, one of the efforts to prevent crowd violations is the traditional market visitor detection monitoring system by market management so that market visitors do not violate health protocols and crowds that occur in an area can be avoided. In this study, an IoT-based crowd detection system application prototype uses an RFID sensor MFRC522 as a crowd indicator based on data on the number of visitors entering a kiosk that is recorded in the database and then displayed on the application, this data becomes an indicator of which kiosk other visitors want to go to so that the crowd can be avoided. System functionality testing was carried out with 4 scenarios and system reliability testing through data transmission was carried out 10 times with test data in the form of kiosk id and visitor id sent via a single Transmission Control Protocol (TCP) with a full-duplex communication channel. The test results show that crowd indications can be detected in the application with data transmission speeds reaching 875 KB/s with an average delay of 231.4 ms and a standard deviation of 215 ± 313 ms.
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基于物联网的rfid mfrc522传统市场游客人群检测系统原型应用
在应对COVID-19大流行时,人群是政府关注的焦点,因为病毒在不知不觉中从一个人传播到另一个人,并传播到最近的环境。很难避开人群的地方之一是传统市场,被认为是有可能成为新冠病毒传播中心的地方之一。政府在抑制人群方面的各种努力取得了成效,但也有不少违规行为是有意无意的,防止人群违规行为的一种努力是市场管理部门采用传统的市场访客检测监控系统,使市场访客不违反卫生协议,避免在一个区域内发生人群。在本研究中,基于物联网的人群检测系统应用原型使用RFID传感器MFRC522作为人群指示器,根据数据库中记录的进入kiosk的游客数量数据显示在应用程序上,该数据成为其他游客想要去哪个kiosk的指示器,从而可以避开人群。通过数据传输进行了10次系统可靠性测试,测试数据以kiosk id和访客id的形式通过全双工通信通道通过单一传输控制协议(TCP)发送。测试结果表明,在数据传输速度达到875 KB/s,平均延迟为231.4 ms,标准偏差为215±313 ms的情况下,应用程序可以检测到人群指示。
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